Introduction: Advances in Computational Systems Bioinformatics

T. Wittkop, S. Mooney
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Abstract

This special issue of the Journal of Bioinformatics and Computational Biology is devoted to the Computational Systems Bioinformatics Conference (CSB) held in August 2010 at Stanford University. Out of 19 peer-reviewed manuscripts that have been presented at the conference and subsequently been published in the Proceedings of the Nineth Computational Systems Bioinformatics Conference (CSB’10), we selected eight papers to be published here. The selected papers have reached the highest scores in the initial peer-reviewing process. As we offered the authors to expand the conference manuscript by up to 30%, a second review process has been conducted to strengthen their scientific quality. The final result is this exciting collection of eight high-quality papers: Parker et al. present in “Optimization of therapeutic proteins to delete T-Cell epitopes while maintaining beneficial residue interactions” an integer programming approach that attacks the NP-hard problem of selecting sets of mutations predicted to delete immunogenic T-cell epitopes, while simultaneously maintaining important residues and residue interactions. In “Temporal graphical models for cross-species gene regulatory network discovery”, Liu et al. concentrated on cross-species gene expression analysis. They developed a hidden Markov random field regression to jointly uncover the regulatory networks for multiple species, thus capturing the causal relations between genes from time-series microarray data across species. In their paper “Classification of large microarray datasets using fast random forest construction”, Manilich et al. customized the widely used random forest classifier to address specific properties of microarray data. By reducing overlapping computations and eliminating dependency on the size of the main memory, their implementation shows an increased performance for this application. Ozer et al. studied ways to compare multiple ChIP-seq experiments in their manuscript “Comparing multiple ChIP-sequencing experiments” in order to attack the challenge of comparing multiple cell lines under different experimental conditions despite the massive amount of data produced by high-throughput sequencing
导论:计算系统生物信息学进展
这期《生物信息学与计算生物学》杂志的特刊致力于2010年8月在斯坦福大学举行的计算系统生物信息学会议(CSB)。从19篇在会议上发表并随后在第九届计算系统生物信息学会议论文集(CSB ' 10)上发表的同行评审手稿中,我们选择了8篇论文在这里发表。入选的论文在最初的同行评审过程中达到了最高分。由于我们向作者提供了将会议手稿扩大30%的机会,我们已经进行了第二次审查,以加强他们的科学质量。最终的结果是这个令人兴奋的八篇高质量论文的集合:Parker等人在“优化治疗蛋白以删除t细胞表位,同时保持有益的残基相互作用”中提出了一种整数规划方法,该方法解决了np难题,即选择预测删除免疫原性t细胞表位的突变集,同时保持重要的残基和残基相互作用。在“跨物种基因调控网络发现的时间图形模型”中,Liu等人着重于跨物种基因表达分析。他们开发了一种隐马尔可夫随机场回归,共同揭示了多物种的调控网络,从而从跨物种的时间序列微阵列数据中捕获了基因之间的因果关系。Manilich等人在他们的论文“使用快速随机森林构建的大型微阵列数据集分类”中,定制了广泛使用的随机森林分类器来处理微阵列数据的特定属性。通过减少重叠计算和消除对主存大小的依赖,它们的实现提高了应用程序的性能。Ozer等人在他们的论文“比较多个ChIP-seq实验”中研究了比较多个ChIP-seq实验的方法,以应对在高通量测序产生大量数据的情况下,在不同实验条件下比较多个细胞系的挑战
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